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A high precision crack classification system using multi-layered image processing and deep belief learning

机译:一种高精度裂缝分类系统,使用多层图像处理和深度信仰学习

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摘要

Road surfaces experience fatigue stress and loading, which often lead to cracks on the surface. The cracks might cause serious damage, and therefore, early detection can reduce the road maintenance cost. Traditional inspection methods are carried out by humans and are slow, costly and hazardous. To improve accuracy and reduce the hazards of current crack detection methods, this paper proposes a new autonomous crack detection system (ACDS) that can be used in any autonomous vehicles (UAVs). ACDS consists of three stages: image acquisition, image processing, and classification. The image processing stage consists of five parallel filtering methods, which remove noise and extract features from the images. In the classification stage, five deep belief network (DBN) classifiers separately analyse the images to detect cracks. The dataset used in this paper contains 15,000 RGB and infrared images, with or without cracks. The results show the high precision of the proposed system.
机译:道路表面经历疲劳应力和装载,这通常导致表面裂缝。 裂缝可能会造成严重损坏,因此,早期检测可以降低道路维护成本。 传统的检查方法由人类进行,缓慢,昂贵和危险。 为了提高准确性和减少电流裂纹检测方法的危险,本文提出了一种可用于任何自主车辆(无人机)的新型自治裂缝检测系统(ACD)。 ACD由三个阶段组成:图像采集,图像处理和分类。 图像处理阶段由五个并行滤波方法组成,其消除图像中的噪声和提取特征。 在分类阶段,五个深度信仰网络(DBN)分类器分别分析图像以检测裂缝。 本文中使用的数据集包含15,000个RGB和红外图像,有或没有裂缝。 结果显示了所提出的系统的高精度。

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